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From senses to sensors : autonomous cars and probing what machine learning does to mobilities studies

Mukhtar-Landgren, Dalia LU and Paulsson, Alexander LU (2023) In Distinktion 24(2). p.301-314
Abstract

Cars are nowadays being programmed to learn how to drive themselves. While autonomous cars are often portrayed as the next step in the auto-motive industry, they have already begun roaming the streets in some US cities. Building on a growing body of critical scholarship on the development of autonomous cars, we explore what machine learning is in open environments like cities by juxtaposing this to the field of mobilities studies. We do so by revisiting core concepts in mobilities studies: movement, representation and embodied experience. Our analysis of machine learning is centred around the transition from human senses to sensors mounted on cars, and what this implies in terms of autonomy. While much of the discussions related to this... (More)

Cars are nowadays being programmed to learn how to drive themselves. While autonomous cars are often portrayed as the next step in the auto-motive industry, they have already begun roaming the streets in some US cities. Building on a growing body of critical scholarship on the development of autonomous cars, we explore what machine learning is in open environments like cities by juxtaposing this to the field of mobilities studies. We do so by revisiting core concepts in mobilities studies: movement, representation and embodied experience. Our analysis of machine learning is centred around the transition from human senses to sensors mounted on cars, and what this implies in terms of autonomy. While much of the discussions related to this transition are already foregrounded in mobilities studies, due to this field's emphasis on complexities and the understanding of automobility as a socio-technological system, questions about autonomy still emerge in a slightly new light with the advent of machine learning. We conclude by suggesting that in mobilities studies, autonomy has always been seen as intertwined with technology, yet we argue that machine learning unfolds autonomy as intrinsic to technology, as the space between the car, the driver and the context is collapsing with autonomous cars.

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Please use this url to cite or link to this publication:
author
and
organization
publishing date
type
Contribution to journal
publication status
published
subject
keywords
automobility, autonomous vehicles, machine learning, Mobilities, seamlessness, senses, sensors
in
Distinktion
volume
24
issue
2
pages
301 - 314
publisher
Taylor & Francis
external identifiers
  • scopus:85150641223
ISSN
1600-910X
DOI
10.1080/1600910X.2023.2186819
language
English
LU publication?
yes
additional info
Publisher Copyright: © 2023 The Author(s). Published by Informa UK Limited, trading as Taylor & Francis Group.
id
498b6bad-9481-4733-88a1-94d63175a01d
date added to LUP
2023-04-11 18:33:52
date last changed
2023-10-26 14:48:50
@article{498b6bad-9481-4733-88a1-94d63175a01d,
  abstract     = {{<p>Cars are nowadays being programmed to learn how to drive themselves. While autonomous cars are often portrayed as the next step in the auto-motive industry, they have already begun roaming the streets in some US cities. Building on a growing body of critical scholarship on the development of autonomous cars, we explore what machine learning is in open environments like cities by juxtaposing this to the field of mobilities studies. We do so by revisiting core concepts in mobilities studies: movement, representation and embodied experience. Our analysis of machine learning is centred around the transition from human senses to sensors mounted on cars, and what this implies in terms of autonomy. While much of the discussions related to this transition are already foregrounded in mobilities studies, due to this field's emphasis on complexities and the understanding of automobility as a socio-technological system, questions about autonomy still emerge in a slightly new light with the advent of machine learning. We conclude by suggesting that in mobilities studies, autonomy has always been seen as intertwined with technology, yet we argue that machine learning unfolds autonomy as intrinsic to technology, as the space between the car, the driver and the context is collapsing with autonomous cars.</p>}},
  author       = {{Mukhtar-Landgren, Dalia and Paulsson, Alexander}},
  issn         = {{1600-910X}},
  keywords     = {{automobility; autonomous vehicles; machine learning; Mobilities; seamlessness; senses; sensors}},
  language     = {{eng}},
  month        = {{03}},
  number       = {{2}},
  pages        = {{301--314}},
  publisher    = {{Taylor & Francis}},
  series       = {{Distinktion}},
  title        = {{From senses to sensors : autonomous cars and probing what machine learning does to mobilities studies}},
  url          = {{http://dx.doi.org/10.1080/1600910X.2023.2186819}},
  doi          = {{10.1080/1600910X.2023.2186819}},
  volume       = {{24}},
  year         = {{2023}},
}